Chien Li-Chu, Bowden Donald W, Chiu Yen-Feng
Center for Fundamental Science, Kaohsiung Medical University, Kaohsiung, Taiwan.
Center for Diabetes Research, Wake Forest School of Medicine, Winston-Salem, North Carolina, United States of America.
Genet Epidemiol. 2017 Sep;41(6):511-522. doi: 10.1002/gepi.22054. Epub 2017 Jun 4.
Family-based designs enriched with affected subjects and disease associated variants can increase statistical power for identifying functional rare variants. However, few rare variant analysis approaches are available for time-to-event traits in family designs and none of them applicable to the X chromosome. We developed novel pedigree-based burden and kernel association tests for time-to-event outcomes with right censoring for pedigree data, referred to FamRATS (family-based rare variant association tests for survival traits). Cox proportional hazard models were employed to relate a time-to-event trait with rare variants with flexibility to encompass all ranges and collapsing of multiple variants. In addition, the robustness of violating proportional hazard assumptions was investigated for the proposed and four current existing tests, including the conventional population-based Cox proportional model and the burden, kernel, and sum of squares statistic (SSQ) tests for family data. The proposed tests can be applied to large-scale whole-genome sequencing data. They are appropriate for the practical use under a wide range of misspecified Cox models, as well as for population-based, pedigree-based, or hybrid designs. In our extensive simulation study and data example, we showed that the proposed kernel test is the most powerful and robust choice among the proposed burden test and the existing four rare variant survival association tests. When applied to the Diabetes Heart Study, the proposed tests found exome variants of the JAK1 gene on chromosome 1 showed the most significant association with age at onset of type 2 diabetes from the exome-wide analysis.
富含患病个体和疾病相关变异的基于家系的设计能够提高识别功能性罕见变异的统计效力。然而,在基于家系的设计中,针对事件发生时间性状的罕见变异分析方法很少,且没有一种适用于X染色体。我们针对带有删失的家系数据中的事件发生时间结局,开发了基于家系的新型负担和核关联检验,称为FamRATS(用于生存性状的基于家系的罕见变异关联检验)。采用Cox比例风险模型将事件发生时间性状与罕见变异相关联,具有灵活性,可涵盖所有范围并合并多个变异。此外,针对所提出的检验以及包括传统基于人群的Cox比例模型和针对家系数据的负担、核和平方和统计量(SSQ)检验在内的四种现有检验,研究了违反比例风险假设时的稳健性。所提出的检验可应用于大规模全基因组测序数据。它们适用于广泛的错误设定的Cox模型下的实际应用,以及基于人群、基于家系或混合设计。在我们广泛的模拟研究和数据示例中,我们表明,在所提出的负担检验和现有的四种罕见变异生存关联检验中,所提出的核检验是最具效力和稳健性的选择。当应用于糖尿病心脏研究时,所提出的检验在全外显子组分析中发现,1号染色体上JAK1基因的外显子变异与2型糖尿病发病年龄的关联最为显著。